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Tiny machine learning models for autonomous workload distribution across cloud-edge computing continuum
Department of Computer Engineering, Bu-Ali Sina University, Hamedan, Iran.
Umeå University, Faculty of Science and Technology, Department of Computing Science. Department of Computer Engineering, Bu-Ali Sina University, Hamedan, Iran; School of Computer Science, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran.
Department of Electrical Engineering, Isfahan (Khorasgan) Branch, Islamic Azad University, Isfahan, Iran.
Umeå University, Faculty of Science and Technology, Department of Computing Science.ORCID iD: 0000-0002-2633-6798
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2025 (English)In: Cluster Computing, ISSN 1386-7857, E-ISSN 1573-7543, Vol. 28, no 6, article id 381Article in journal (Refereed) Published
Abstract [en]

Resource management and task distribution in real-time have become increasingly challenging due to the growing use of latency-critical applications across dispersed edge-cloud infrastructures. Intelligent adaptable mechanisms capable of functioning effectively on resource-constrained edge devices and responding quickly to dynamic workload changes are required in these situations. In this work, we offer a learning-based system for autonomous resource allocation across the edge–cloud continuum that is both lightweight and scalable. Two models are presented: TinyDT, a small offline decision tree trained on state-action information retrieved from an adaptive baseline, and TinyXCS, an online rule-based classifier system that can adjust to runtime conditions. Both models are designed to operate on resource-constrained edge devices while minimizing memory overhead and inference latency. Our analysis demonstrates that TinyXCS and TinyDT outperform existing online and offline baselines in terms of throughput and latency, providing a reliable, power-efficient solution for next-generation edge intelligence.

Place, publisher, year, edition, pages
Springer Nature, 2025. Vol. 28, no 6, article id 381
Keywords [en]
Cloud computing, Edge computing, Internet of things (IoT), Tiny models, Workload distribution
National Category
Computer Systems Computer Sciences
Identifiers
URN: urn:nbn:se:umu:diva-242012DOI: 10.1007/s10586-025-05289-xISI: 001509955700002Scopus ID: 2-s2.0-105008064820OAI: oai:DiVA.org:umu-242012DiVA, id: diva2:1983012
Available from: 2025-07-09 Created: 2025-07-09 Last updated: 2025-07-09Bibliographically approved

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Abbasi, MahdiElmroth, Erik

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